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SQG-Differential Evolution for Difficult Optimization Problems under a Tight Function Evaluation Budget

机译:紧函数评估预算下困难优化问题的SQG微分进化

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In the context of industrial engineering, it is important to integrate efficient computational optimization methods in the product development process. Some of the most challenging simulation-based engineering design optimization problems are characterized by: a large number of design variables, the absence of analytical gradients, highly non-linear objectives and a limited function evaluation budget. Although a huge variety of different optimization algorithms is available, the development and selection of efficient algorithms for problems with these industrial relevant characteristics, remains a challenge. In this communication, a hybrid variant of Differential Evolution (DE) is introduced which combines aspects of Stochastic Quasi-Gradient (SQG) methods within the framework of DE, in order to improve optimization efficiency on problems with the previously mentioned characteristics. The performance of the resulting derivative-free algorithm is compared with other state-of-the-art DE variants on 25 commonly used benchmark functions, under tight function evaluation budget constraints of 1000 evaluations. The experimental results indicate that the new algorithm performs excellent on the 'difficult' (high dimensional, multi-modal, inseparable) test functions. The operations used in the proposed mutation scheme, are computationally inexpensive, and can be easily implemented in existing differential evolution variants or other population-based optimization algorithms by a few lines of program code as an non-invasive optional setting. Besides the applicability of the presented algorithm by itself, the described concepts can serve as a useful and interesting addition to the algorithmic operators in the frameworks of heuristics and evolutionary optimization and computing.
机译:在工业工程中,重要的是在产品开发过程中集成有效的计算优化方法。一些基于模拟的最具挑战性的工程设计优化问题的特征是:大量的设计变量,缺少分析梯度,高度非线性的目标以及功能评估预算有限。尽管有各种不同的优化算法可供使用,但是针对具有这些工业相关特性的问题,开发和选择有效的算法仍然是一个挑战。在此通信中,引入了差分演化(DE)的混合变体,该变体在DE的框架内结合了随机拟梯度(SQG)方法的各个方面,以提高针对具有上述特征的问题的优化效率。在1000个评估的严格功能评估预算约束下,将所得的无导数算法的性能与25个常用基准函数上的其他最新DE变量进行了比较。实验结果表明,该新算法在“困难”(高维,多模态,不可分割)测试功能上表现出色。拟议的突变方案中使用的操作在计算上不昂贵,并且可以通过几行程序代码作为非侵入性可选设置轻松地在现有的差分进化变体或其他基于种群的优化算法中实施。除了所提出算法本身的适用性之外,所描述的概念还可以作为启发式算法,进化优化和计算框架中算法运算符的有用且有趣的补充。

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